基于改进型蚁狮优化器的风能太阳能储能微电网能源管理策略

Rui Liu
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引用次数: 0

摘要

微电网的能源管理包括优化容量配置,这对微电网的经济性和稳定运行有重大影响。本文提出了一种微电网运行控制策略,可有效管理分布式电源和储能,优化容量配置。考虑到最小年成本和最优规模约束,本文建立了微电网能源管理的数学优化模型。利用动态权重系数和混沌映射对传统的蚁狮优化器(ALO)进行了改进,以提高种群的多样性和算法的收敛性。这样可以有效避免局部最优解和过早问题,提高 ALO 算法的收敛速度和搜索能力。在此控制策略和改进 ALO 算法的基础上,利用独立微电网的实际数据进行了仿真和测试,得出了微电网容量分配模型的最优解。案例研究结果验证了所提出的微电网运行控制策略的实用性以及改进蚁群优化算法的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Energy Management Strategy for Wind Solar Storage Microgrid Based on Improved Ant Lion Optimizer
The energy management of microgrids involves optimizing the capacity configuration, which significantly impacts the economic and stable operation of microgrids. This paper presents a control strategy for microgrid operation that effectively manages distributed power sources and energy storage to optimize capacity configuration. A mathematical optimization model for microgrid energy management is established considering minimum annual cost and optimal scale constraints. The traditional Ant Lion Optimizer (ALO) is improved by using dynamic weight coefficients and chaotic mapping to enhance the diversity of the population and improve the convergence of the algorithm. This can effectively avoid local optimal solutions and premature problems, and improve the convergence speed and search ability of the ALO algorithm. Based on this control strategy and improved ALO algorithm, simulations and tests were conducted using actual data from an independent microgrid, resulting in the optimal solution for the microgrid capacity allocation model. The case study results validate the practicality of the proposed microgrid operation control strategy as well as the superiority of the improved ant colony optimization algorithm.
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